Image Enhancement-Based Detection with Small Infrared Targets
<p>Background clutter and noise drowning.</p> "> Figure 2
<p>3D visualisation results for the target before and after enhancement.</p> "> Figure 3
<p>Pixel value calculation.</p> "> Figure 4
<p>Expanded target pixels.</p> "> Figure 5
<p>Overall flow chart.</p> "> Figure 6
<p>NUAA–SIRST dataset, where the red circles are the targets.</p> "> Figure 7
<p>Breakdown by number of targets.</p> "> Figure 8
<p>Breakdown by percentage of targets.</p> "> Figure 9
<p>Comparison of our algorithm with other algorithms.</p> "> Figure 10
<p>Enhancing small targets.</p> "> Figure 11
<p>Detection results before and after sharpening.</p> "> Figure 12
<p>Experiment with expanded target pixels.</p> "> Figure 13
<p>Detection results before and after upsampling.</p> "> Figure 14
<p>Comparison of detection results with DNANet, in which the subfigures (<b>a</b>–<b>h</b>) are some experimental samples in recognition with red circles containing targets, the 1st line shows original pictures, 2nd line shows the ground truth of the recognition results, 3rd line shows the recognition results of DNANet, and the last line shows the recognition result of the proposed method in this paper.</p> "> Figure 15
<p>Ablation study.</p> "> Figure 16
<p>Comparison of ablation study results, where targets are shown in the red circle.</p> ">
Abstract
:1. Introduction
- (1)
- The imaging distance of small infrared target usually makes the pixel ratio of small target to the whole image very small.
- (2)
- The target radiance decreases with the increase of the action distance, which makes the target weak and the distance from the environment is low. The target is easy to be submerged by the complex background, resulting in the failure of detection.
- (3)
- Among other factors, the existence of interference objects similar to the target in complex imaging environment and complex background will result in a high rate of false alarms.
- (1)
- Background clutter and noise obscure small targets, resulting in their failure to be detected;
- (2)
- The target is very small, resulting in detection failure.
- (1)
- Sharpening spatial filters is proposed to enhance small targets. By increasing the contrast between the edges of the object and the surrounding image elements, the small target is emphasised at a nuanced level, and the separation of the small target from the background is increased. Compared with existing algorithms, our algorithm makes small targets clearer and easier to detect, thus solving the problem of the inaccurate detection of small targets due to background clutter and noise drowning.
- (2)
- Upsampling is designed to expand the target pixels, i.e., the image is scaled equally using bi–triple interpolation, allowing the enhanced small targets to be scaled up as well. Very small targets that are difficult to detect are enlarged to targets that are relatively easy to detect. In practice, the algorithm enhances the recognition of small targets and solves the problem of detection failure due to a small target.
- (3)
- By comparing the experiments with other algorithms on the NUAA–SIRST dataset, it is demonstrated that the algorithm proposed in this paper has better performance relative to existing algorithms in the three evaluation metrics of Pd, Fa and IoU, and it has better applications in the field of perception of autonomous systems.
- (4)
2. Related Works
2.1. Infrared Small-Target Detection in Autonomous Systems
2.2. Sharpening Spatial Filters
2.3. Upsampling
3. Proposed Method
3.1. Revisiting DNANet Detector
3.2. Target Feature Enhancement Based on Sharpening Spatial Filters
3.3. Target Pixel Point Expansion Based on Upsampling
3.4. Overall Process
4. Results of the Numerical Experiments
4.1. Introduction to the Dataset
4.2. Assessment Indicators
- (1)
- IoU (Intersection of Union) is a standard to measure the detection accuracy, which can evaluate the shape detection ability of the algorithm. The result can be obtained by calculating the overlap between the predicted target and the ground truth value divided by the union of the two regions, where Area of Overlap represents the overlap and Area of Union represents the union part:
- (2)
- Detection rate Pd:Pd measures the accuracy of target detection by comparing the detected results with ground truth to Pd, where the number of targets detected is Np and the number of ground truths is Nr:
- (3)
- False alarm rate Fa:FA is used to evaluate the degree of misjudgement. The result is obtained by calculating the ratio of mispredicted pixels to all pixels of the image, where PF is the misjudged pixels and PA is all pixels in the image:
- (4)
- Mean Intersection over Union:mIoU is an index used to measure the accuracy of image segmentation. The higher the mIoU, the better the performance. Intersection is the number of pixels in the intersection area, and combine is the number of pixels in the union area.
4.3. Quantitative Analysis
4.4. Quantitative Analysis
4.4.1. Enhanced Target Characteristics
4.4.2. Expanded Target Pixels
4.4.3. Comparison of Test Results
4.5. Ablation Experiments
- (1)
- Use of sharpening spatial filters only: Only the mutation information, details and edge information of the image are enhanced, without upsampling.
- (2)
- Upsampling only: cubic interpolation on the matrix of the input image using bicubic filtering only to increase the target pixel.
- (3)
- Upsampling and then using the sharpening spatial filter: first upsampling the image to increase the target pixels and then using the sharpening spatial filter.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Stage | Conv | Max Pool | Up-Conv | Backbone | Leraning Rate |
---|---|---|---|---|---|
3 × 3 | 2 × 2 | 2 × 2 | resnet_18 | 0.005 |
Pre-Enhancement | After Enhancement | |
---|---|---|
SCR | 0.074 | 0.134 |
Metric | WSLCM | TLLCM | NRAM | RIPT | PSTNN | MSLSTIPT | MDvsFA-cGAN | ALCNet | DNANet | Proposed |
---|---|---|---|---|---|---|---|---|---|---|
IoU (×10−2) | 1.158 | 1.029 | 12.16 | 11.05 | 22.40 | 10.30 | 60.30 | 73.33 | 75.46 | 75.55 |
Pd (×10−2) | 77.95 | 79.09 | 74.52 | 79.08 | 77.95 | 82.13 | 89.35 | 95.57 | 96.95 | 98.48 |
Fa (×10−6) | 5446 | 5899 | 13.85 | 22.01 | 29.11 | 1131 | 56.35 | 30.47 | 13.23 | 10.09 |
(a) | (b) | (c) | (d) | (e) | (f) | (g) | (h) | |
---|---|---|---|---|---|---|---|---|
DNANet | 0.21 | 0 | 0.74 | 0.28 | 0 | 0 | 0.80 | 0.65 |
Proposed | 0.43 | 0.4 | 0.84 | 0.88 | 0.37 | 0.58 | 0.90 | 0.83 |
IoU (×10−2) | Pd (×10−2) | Fa (×10−6) | |
---|---|---|---|
Sharpening only | 75.01 | 97.71 | 11.97 |
Up-sampling only | 75.22 | 96.95 | 12.12 |
Up-sample then sharpen | 75.42 | 96.95 | 12.19 |
Proposed | 75.55 | 98.48 | 10.90 |
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Liu, S.; Chen, P.; Woźniak, M. Image Enhancement-Based Detection with Small Infrared Targets. Remote Sens. 2022, 14, 3232. https://doi.org/10.3390/rs14133232
Liu S, Chen P, Woźniak M. Image Enhancement-Based Detection with Small Infrared Targets. Remote Sensing. 2022; 14(13):3232. https://doi.org/10.3390/rs14133232
Chicago/Turabian StyleLiu, Shuai, Pengfei Chen, and Marcin Woźniak. 2022. "Image Enhancement-Based Detection with Small Infrared Targets" Remote Sensing 14, no. 13: 3232. https://doi.org/10.3390/rs14133232
APA StyleLiu, S., Chen, P., & Woźniak, M. (2022). Image Enhancement-Based Detection with Small Infrared Targets. Remote Sensing, 14(13), 3232. https://doi.org/10.3390/rs14133232